Abstract
This study investigates the integration of machine learning (ML) and data assimilation (DA) techniques, focusing on implementing surrogate models for Geological Carbon Storage (GCS) projects while maintaining the high fidelity physical results in posterior states. Initially, we evaluate the surrogate modeling capability of two distinct machine learning models, Fourier Neural Operators (FNOs) and Transformer UNet (T-UNet), in the context of CO2 injection simulations within channelized reservoirs. We introduce the Surrogate-based hybrid ESMDA (SH-ESMDA), an adaptation of the traditional Ensemble Smoother with Multiple Data Assimilation (ESMDA). This method uses FNOs and T-UNet as surrogate models and has the potential to make the standard ESMDA process at least 50% faster or more, depending on the number of assimilation steps. Additionally, we introduce Surrogate-based Hybrid RML (SH-RML), a variational data assimilation approach that relies on the randomized maximum likelihood (RML) where both the FNO and the T-UNet enable the computation of gradients for the optimization of the objective function, and a high-fidelity model is employed for the computation of the posterior states. Our comparative analyses show that SH-RML offers a better uncertainty quantification when compared to the conventional ESMDA for the case study.
Original language | English |
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Article number | 104190 |
Number of pages | 22 |
Journal | International Journal of Greenhouse Gas Control |
Volume | 136 |
DOIs | |
Publication status | Published - Jul 2024 |
Bibliographical note
Publisher Copyright:© 2024 The Author(s)
Funding
The authors thank Petroleo Brasileiro S.A. (Petrobras) for sponsor-ing the doctoral research of Gabriel Serr & atilde;o Seabra and Vinicius Luiz Santos Silva. We also thank Guillaume Rongier for providing valuable insights on geological modeling, Alexandre Emerick and Rafael Oliveira for sharing expertise on data assimilation techniques, and Ahmed ElSheikh for fruitful discussions about the machine learning models.
Funders | Funder number |
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Petroleo Brasileiro S.A. (Petrobras) |
Keywords
- Data assimilation
- Geological Carbon Storage (GCS)
- Machine learning
- Uncertainty quantification